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Alcoholic Behavior Prediction through Comparative Analysis of J48 and Random Tree Classification Algorithms using WEKA

机译:通过对J48和WEKA的随机树分类算法的比较分析来预测酒的行为

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Objectives/Background: Addiction of alcohol is a complex disease which results from diversity of social, genetic and environmental influences. A report by World Health Organization, WHO (2014) estimates that most of the deaths are from alcohol related causes.The objective of this study is to analyze the alcoholic behavior of different age group people on the basis of risk factors. In this paper, we construct a comparative model of different classification techniques to analyze the best algorithm for predicting the alcoholic behavior of a person. Methods: Under this context, random tree and J48 that are decision tree algorithms have been exercised on the dataset of 600 people that is collected through a structured questionnaire by visiting de addicted centers, colleges, villages, government offices, old age homes of Patiala, Punjab. Findings: Results conclude that the random tree provides more precise results than J48 for all the age group people. Risk factors that come out to be most effective are impulsive nature, sensation seeking nature, financial loss, family conflict, depression, child abuse, alcoholic shop near home distance.The overall accuracy of random tree is 75.94% and for J48 is 71.26%. Applications/Improvement: There is a need to develop some intelligent tools in this area and the rules extracted from this analysis can be further used for designing the tool. More attributescan be incorporated to achieve the optimal results for predicting the behavior of an alcoholic person.
机译:目标/背景:酒精成瘾是一种复杂的疾病,是由于社会,遗传和环境影响的多样性所致。世卫组织世界卫生组织的一份报告(2014年)估计,大多数死亡是与酒精相关的原因引起的。本研究的目的是根据危险因素分析不同年龄段人群的酒精行为。在本文中,我们构建了一个不同分类技术的比较模型,以分析预测一个人的酗酒行为的最佳算法。方法:在这种背景下,随机树和决策树算法J48在600人的数据集上得到了运用,这些数据是通过访问成瘾的中心,大学,村庄,政府机关,帕蒂亚拉的养老院,旁遮普发现:结果得出结论,对于所有年龄段的人,随机树提供的结果均比J48更精确。最有效的风险因素是冲动性,寻求自然的感觉,经济损失,家庭冲突,抑郁,虐待儿童,在家庭距离附近酗酒。随机树的整体准确性为75.94%,而J48的整体准确性为71.26%。应用程序/改进:有必要在此领域中开发一些智能工具,并且可以将从该分析中提取的规则进一步用于设计该工具。可以合并更多的属性以获得用于预测酒鬼行为的最佳结果。

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